special Issue on "Engineering Emotional Design (EED) and Kansei Engineering (KE)International audienceStarting from a primary perceptual evaluation of a set of car dashboards, we propose to build a Bayesian network (BN) between perceptual attributes and design attributes. Two types of learning processes may be considered: supervised BN when the prediction on a targeted attribute must be optimised and unsupervised BN otherwise. These two types of BNs are considered along three design simulation scenarios: the direct scenario which consists of the prediction of a design change impact on customer perceptions, the inverse scenario for fixing design characteristics so as to result in an expected customer perception, and a more realistic combined...
In the reliability analysis community Bayesian Networks have gained increasedinterest and is a eld o...
textDesign problems in engineering are typically complex, and are therefore decomposed into a hierar...
This article presents a Bayesian method to predict future customer need distributions based on forec...
A bayesian learning of probabilistic relations between perceptual attributes and technical character...
AbstractInterdisciplinary approaches in food research require new methods in data analysis that are ...
Interdisciplinary approaches in food research require new methods in data analysis that are able to ...
Abstract—Models of the human driving behavior are essential for the rapid prototyping of assistance ...
This chapter presents an application of Bayesian network technology in an empirical customer satisfa...
A Bayesian network is a graph-based model of joint multivariate probability distributions that captu...
A probabilistic approach to predict the expected quality of complex during all stages of the product...
Structure adaptability design is critical for function evolution in product families, in which many ...
AbstractComplexity in manufacturing arises due to the intertwined relationships between products and...
A Bayesian network (BN) is a powerful tool to represent the quantitative and qualitative features of...
Bayesian networks are a very general and powerful tool that can be used for a large number of proble...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...
In the reliability analysis community Bayesian Networks have gained increasedinterest and is a eld o...
textDesign problems in engineering are typically complex, and are therefore decomposed into a hierar...
This article presents a Bayesian method to predict future customer need distributions based on forec...
A bayesian learning of probabilistic relations between perceptual attributes and technical character...
AbstractInterdisciplinary approaches in food research require new methods in data analysis that are ...
Interdisciplinary approaches in food research require new methods in data analysis that are able to ...
Abstract—Models of the human driving behavior are essential for the rapid prototyping of assistance ...
This chapter presents an application of Bayesian network technology in an empirical customer satisfa...
A Bayesian network is a graph-based model of joint multivariate probability distributions that captu...
A probabilistic approach to predict the expected quality of complex during all stages of the product...
Structure adaptability design is critical for function evolution in product families, in which many ...
AbstractComplexity in manufacturing arises due to the intertwined relationships between products and...
A Bayesian network (BN) is a powerful tool to represent the quantitative and qualitative features of...
Bayesian networks are a very general and powerful tool that can be used for a large number of proble...
Abstract: We present a new Bayesian network modeling that learns the behavior of an unknown system f...
In the reliability analysis community Bayesian Networks have gained increasedinterest and is a eld o...
textDesign problems in engineering are typically complex, and are therefore decomposed into a hierar...
This article presents a Bayesian method to predict future customer need distributions based on forec...